伤口感染性细菌的高含量成像和深度学习驱动检测。

IF 3.5 3区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Bioprocess and Biosystems Engineering Pub Date : 2024-12-02 DOI:10.1007/s00449-024-03110-4
Ziyi Zhang, Lanmei Gao, Houbing Zheng, Yi Zhong, Gaozheng Li, Zhaoting Ye, Qi Sun, Biao Wang, Zuquan Weng
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引用次数: 0

摘要

快速、准确地检测伤口感染细菌对有效的临床治疗至关重要。然而,传统方法需要24小时以上才能产生结果,这不足以满足迫切的临床需求。在这里,我们引入了一个深度学习驱动的框架,用于检测和分类伤口中常见的四种细菌:鲍曼不动杆菌(AB)、大肠杆菌(EC)、铜绿假单胞菌(PA)和金黄色葡萄球菌(SA)。该框架利用预训练的ResNet50深度学习架构,在人工收集的高含量成像的周期性细菌菌落生长图像上进行训练。在体外样品中,我们的方法对培养8 h的早期菌落的检出率达到95%以上,与传统的环境保护署(EPA)批准的方法相比,检测时间缩短了12 h以上。对于菌落分类,它识别AB、EC、PA和SA菌落的准确率分别为96%、97%、96%和98%。对于混合细菌样本,它识别菌落的准确率为95%,分类准确率为93%。在小鼠伤口样本中,该方法识别了超过90%的正在发育的细菌菌落,并对菌落类型进行了分类,平均准确率超过94%。这些结果突出了该框架在改善伤口感染临床治疗方面的潜力。此外,该框架还为检测结果提供了关键特征的可视化,提高了用户预测的可信度。总之,所提出的框架实现了高通量鉴定,显著缩短了检测时间,并为早期细菌检测提供了一种经济有效的工具。
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High-content imaging and deep learning-driven detection of infectious bacteria in wounds.

Fast and accurate detection of infectious bacteria in wounds is crucial for effective clinical treatment. However, traditional methods take over 24 h to yield results, which is inadequate for urgent clinical needs. Here, we introduce a deep learning-driven framework that detects and classifies four bacteria commonly found in wounds: Acinetobacter baumannii (AB), Escherichia coli (EC), Pseudomonas aeruginosa (PA), and Staphylococcus aureus (SA). This framework leverages the pretrained ResNet50 deep learning architecture, trained on manually collected periodic bacterial colony-growth images from high-content imaging. In in vitro samples, our method achieves a detection rate of over 95% for early colonies cultured for 8 h, reducing detection time by more than 12 h compared to traditional Environmental Protection Agency (EPA)-approved methods. For colony classification, it identifies AB, EC, PA, and SA colonies with accuracies of 96%, 97%, 96%, and 98%, respectively. For mixed bacterial samples, it identifies colonies with 95% accuracy and classifies them with 93% precision. In mouse wound samples, the method identifies over 90% of developing bacterial colonies and classifies colony types with an average accuracy of over 94%. These results highlight the framework's potential for improving the clinical treatment of wound infections. Besides, the framework provides the detection results with key feature visualization, which enhance the prediction credibility for users. To summarize, the proposed framework enables high-throughput identification, significantly reducing detection time and providing a cost-effective tool for early bacterial detection.

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来源期刊
Bioprocess and Biosystems Engineering
Bioprocess and Biosystems Engineering 工程技术-工程:化工
CiteScore
7.90
自引率
2.60%
发文量
147
审稿时长
2.6 months
期刊介绍: Bioprocess and Biosystems Engineering provides an international peer-reviewed forum to facilitate the discussion between engineering and biological science to find efficient solutions in the development and improvement of bioprocesses. The aim of the journal is to focus more attention on the multidisciplinary approaches for integrative bioprocess design. Of special interest are the rational manipulation of biosystems through metabolic engineering techniques to provide new biocatalysts as well as the model based design of bioprocesses (up-stream processing, bioreactor operation and downstream processing) that will lead to new and sustainable production processes. Contributions are targeted at new approaches for rational and evolutive design of cellular systems by taking into account the environment and constraints of technical production processes, integration of recombinant technology and process design, as well as new hybrid intersections such as bioinformatics and process systems engineering. Manuscripts concerning the design, simulation, experimental validation, control, and economic as well as ecological evaluation of novel processes using biosystems or parts thereof (e.g., enzymes, microorganisms, mammalian cells, plant cells, or tissue), their related products, or technical devices are also encouraged. The Editors will consider papers for publication based on novelty, their impact on biotechnological production and their contribution to the advancement of bioprocess and biosystems engineering science. Submission of papers dealing with routine aspects of bioprocess engineering (e.g., routine application of established methodologies, and description of established equipment) are discouraged.
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